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Robot learning of upper-body human motion by active imitation

Rebeca Marfil, Luis Molina-Tanco, J.A. Rodríguez, Antonio Bandera, F. Sandoval

Year
2006
Citations
8

Abstract

This paper presents a general architecture that allows a humanoid robot to imitate upper-body movements of a human demonstrator. This architecture integrates a mechanism to memorize novel behaviours executed by a human demonstrator, with a module to recognize and generate its own interpretation of already observed behaviours. Our imitator includes three biologically plausible components: i) an attention mechanism to autonomously extract relevant information from the visual input; ii) a supra-modal representation of the motion of observed body parts to map visual and motor domains; and iii) an active imitation module which involves the motor systems in the behaviour recognition process. Experimental results with a real humanoid robot demonstrate the ability of the proposed architecture to acquire novel behaviours and to recognize and reproduce previously memorized ones

Keywords

Humanoid robotComputer scienceImitationArtificial intelligenceMechanism (biology)RobotMotion (physics)Process (computing)Representation (politics)Computer vision

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